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人类抓握行为分析:物体特征与抓握类型

Analysis of human grasping behavior: object characteristics and grasp type.

作者信息

Feix Thomas, Bullock Ian M, Dollar Aaron M

出版信息

IEEE Trans Haptics. 2014 Jul-Sep;7(3):311-23. doi: 10.1109/TOH.2014.2326871.

Abstract

This paper is the first of a two-part series analyzing human grasping behavior during a wide range of unstructured tasks. The results help clarify overall characteristics of human hand to inform many domains, such as the design of robotic manipulators, targeting rehabilitation toward important hand functionality, and designing haptic devices for use by the hand. It investigates the properties of objects grasped by two housekeepers and two machinists during the course of almost 10,000 grasp instances and correlates the grasp types used to the properties of the object. We establish an object classification that assigns each object properties from a set of seven classes, including mass, shape and size of the grasp location, grasped dimension, rigidity, and roundness. The results showed that 55 percent of grasped objects had at least one dimension larger than 15 cm, suggesting that more than half of objects cannot physically be grasped using their largest axis. Ninety-two percent of objects had a mass of 500 g or less, implying that a high payload capacity may be unnecessary to accomplish a large subset of human grasping behavior. In terms of grasps, 96 percent of grasp locations were 7 cm or less in width, which can help to define requirements for hand rehabilitation and defines a reasonable grasp aperture size for a robotic hand. Subjects grasped the smallest overall major dimension of the object in 94 percent of the instances. This suggests that grasping the smallest axis of an object could be a reliable default behavior to implement in grasp planners.

摘要

本文是一个两部分系列文章的第一篇,分析了在广泛的非结构化任务中的人类抓握行为。研究结果有助于阐明人类手部的总体特征,为多个领域提供参考,如机器人操纵器的设计、针对手部重要功能的康复治疗,以及设计供手部使用的触觉设备。研究调查了两名家庭佣工和两名机械师在近10000次抓握过程中所抓握物体的属性,并将所使用的抓握类型与物体属性相关联。我们建立了一种物体分类方法,为每个物体从包括质量、抓握位置的形状和尺寸、被抓握维度、刚度和圆度在内的七个类别中分配属性。结果表明,55%的被抓握物体至少有一个维度大于15厘米,这表明超过一半的物体无法用其最大轴进行物理抓握。92%的物体质量为500克或更小,这意味着完成大部分人类抓握行为可能不需要高有效载荷能力。在抓握方面,96%的抓握位置宽度为7厘米或更小,这有助于确定手部康复的要求,并为机器人手定义合理的抓握孔径尺寸。在94%的情况下,受试者抓握物体的最小总体主要维度。这表明抓握物体的最小轴可能是在抓握规划器中实施的一种可靠的默认行为。

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